End-to-End Delay Bound Analysis for VR and Industrial IoE Traffic Flows under Different Scheduling Policies in a 6G Network
Abstract
:1. Introduction
- Performance measurement of a 6G-based computer network system, where the edge computing node is shared between two concurrent traffic flows, related to two different services, and, hence, having different e2e delay deadlines;
- Formulation of the per flow e2e delay bound for heterogeneous services (VR and industrial IoE), evaluating performance assuming different scheduling policies in order to identify the best solution. The formulation provided is pursued involving SNC theory applied with martingale envelopes describing traffic behavior.
- System performance validation, devoted to measuring the reliability of the network in completing services before corresponding flow deadlines and goodness of the obtained analytical predictions in comparison with simulations results.
2. Related Works
3. System Model
3.1. Channel Model
3.2. Channel Access Scheme
4. End-To-End Delay Analysis
4.1. Martingale Bound for FIFO Policy
4.2. Martingale Bound for EDF Policy
- , ;
- ;
5. Performance Analysis
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Paper | Problem Addressed to Provide VR Services |
---|---|
[14] | Network slicing |
[15] | Content caching and computational offloading |
[16] | Design of a massive MIMO and a multi-connectivity access protocol |
[17] | Packet error rate minimization |
[18] | Implementation of a wireless sensors system |
[19] | Network latency minimization |
[22,23] | End-to-end delay minimization |
[24] | Throughput maximization |
[13] | Martingale-based random access protocols analysis |
Bound | |
---|---|
EDF | , with |
FIFO | with |
Advantages | tightness between theoretical bound and simulation results |
Parameter | Values |
---|---|
f | [0.2 THz, 1THz] |
0.0016 m | |
packet size | 10 Mbits |
20 ms | |
side of the network area | 20 m |
deadlines | 20 and 25 ms |
NLoS probability | |
mean computation time | ms |
13 GHz | |
Water vapor percentage |
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Picano, B.; Fantacci, R. End-to-End Delay Bound Analysis for VR and Industrial IoE Traffic Flows under Different Scheduling Policies in a 6G Network. Computers 2023, 12, 62. https://doi.org/10.3390/computers12030062
Picano B, Fantacci R. End-to-End Delay Bound Analysis for VR and Industrial IoE Traffic Flows under Different Scheduling Policies in a 6G Network. Computers. 2023; 12(3):62. https://doi.org/10.3390/computers12030062
Chicago/Turabian StylePicano, Benedetta, and Romano Fantacci. 2023. "End-to-End Delay Bound Analysis for VR and Industrial IoE Traffic Flows under Different Scheduling Policies in a 6G Network" Computers 12, no. 3: 62. https://doi.org/10.3390/computers12030062
APA StylePicano, B., & Fantacci, R. (2023). End-to-End Delay Bound Analysis for VR and Industrial IoE Traffic Flows under Different Scheduling Policies in a 6G Network. Computers, 12(3), 62. https://doi.org/10.3390/computers12030062